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from typing import *
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from contextlib import contextmanager
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import torch
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import torch.nn as nn
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import torch.nn.functional as F
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import numpy as np
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from tqdm import tqdm
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from easydict import EasyDict as edict
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from torchvision import transforms
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from PIL import Image
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import rembg
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from .base import Pipeline
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from . import samplers
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from ..modules import sparse as sp
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from ..representations import Gaussian, Strivec, MeshExtractResult
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class TrellisImageTo3DPipeline(Pipeline):
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"""
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Pipeline for inferring Trellis image-to-3D models.
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Args:
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models (dict[str, nn.Module]): The models to use in the pipeline.
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sparse_structure_sampler (samplers.Sampler): The sampler for the sparse structure.
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slat_sampler (samplers.Sampler): The sampler for the structured latent.
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slat_normalization (dict): The normalization parameters for the structured latent.
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image_cond_model (str): The name of the image conditioning model.
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"""
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def __init__(
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self,
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models: dict[str, nn.Module] = None,
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sparse_structure_sampler: samplers.Sampler = None,
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slat_sampler: samplers.Sampler = None,
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slat_normalization: dict = None,
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image_cond_model: str = None,
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):
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if models is None:
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return
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super().__init__(models)
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self.sparse_structure_sampler = sparse_structure_sampler
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self.slat_sampler = slat_sampler
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self.sparse_structure_sampler_params = {}
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self.slat_sampler_params = {}
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self.slat_normalization = slat_normalization
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self.rembg_session = None
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self._init_image_cond_model(image_cond_model)
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@staticmethod
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def from_pretrained(path: str) -> "TrellisImageTo3DPipeline":
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"""
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Load a pretrained model.
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Args:
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path (str): The path to the model. Can be either local path or a Hugging Face repository.
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"""
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pipeline = super(TrellisImageTo3DPipeline, TrellisImageTo3DPipeline).from_pretrained(path)
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new_pipeline = TrellisImageTo3DPipeline()
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new_pipeline.__dict__ = pipeline.__dict__
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args = pipeline._pretrained_args
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new_pipeline.sparse_structure_sampler = getattr(samplers, args['sparse_structure_sampler']['name'])(**args['sparse_structure_sampler']['args'])
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new_pipeline.sparse_structure_sampler_params = args['sparse_structure_sampler']['params']
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new_pipeline.slat_sampler = getattr(samplers, args['slat_sampler']['name'])(**args['slat_sampler']['args'])
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new_pipeline.slat_sampler_params = args['slat_sampler']['params']
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new_pipeline.slat_normalization = args['slat_normalization']
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new_pipeline._init_image_cond_model(args['image_cond_model'])
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return new_pipeline
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def _init_image_cond_model(self, name: str):
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"""
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Initialize the image conditioning model.
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"""
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dinov2_model = torch.hub.load('facebookresearch/dinov2', name, pretrained=True)
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dinov2_model.eval()
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self.models['image_cond_model'] = dinov2_model
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transform = transforms.Compose([
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transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]),
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])
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self.image_cond_model_transform = transform
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def preprocess_image(self, input: Image.Image) -> Image.Image:
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"""
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Preprocess the input image.
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"""
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has_alpha = False
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if input.mode == 'RGBA':
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alpha = np.array(input)[:, :, 3]
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if not np.all(alpha == 255):
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has_alpha = True
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if has_alpha:
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output = input
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else:
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input = input.convert('RGB')
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max_size = max(input.size)
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scale = min(1, 1024 / max_size)
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if scale < 1:
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input = input.resize((int(input.width * scale), int(input.height * scale)), Image.Resampling.LANCZOS)
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if getattr(self, 'rembg_session', None) is None:
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self.rembg_session = rembg.new_session('u2net')
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output = rembg.remove(input, session=self.rembg_session)
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output_np = np.array(output)
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alpha = output_np[:, :, 3]
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bbox = np.argwhere(alpha > 0.8 * 255)
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bbox = np.min(bbox[:, 1]), np.min(bbox[:, 0]), np.max(bbox[:, 1]), np.max(bbox[:, 0])
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center = (bbox[0] + bbox[2]) / 2, (bbox[1] + bbox[3]) / 2
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size = max(bbox[2] - bbox[0], bbox[3] - bbox[1])
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size = int(size * 1.2)
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bbox = center[0] - size // 2, center[1] - size // 2, center[0] + size // 2, center[1] + size // 2
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output = output.crop(bbox)
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output = output.resize((518, 518), Image.Resampling.LANCZOS)
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output = np.array(output).astype(np.float32) / 255
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output = output[:, :, :3] * output[:, :, 3:4]
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output = Image.fromarray((output * 255).astype(np.uint8))
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return output
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@torch.no_grad()
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def encode_image(self, image: Union[torch.Tensor, list[Image.Image]]) -> torch.Tensor:
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"""
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Encode the image.
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Args:
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image (Union[torch.Tensor, list[Image.Image]]): The image to encode
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Returns:
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torch.Tensor: The encoded features.
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"""
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if isinstance(image, torch.Tensor):
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assert image.ndim == 4, "Image tensor should be batched (B, C, H, W)"
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elif isinstance(image, list):
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assert all(isinstance(i, Image.Image) for i in image), "Image list should be list of PIL images"
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image = [i.resize((518, 518), Image.LANCZOS) for i in image]
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image = [np.array(i.convert('RGB')).astype(np.float32) / 255 for i in image]
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image = [torch.from_numpy(i).permute(2, 0, 1).float() for i in image]
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image = torch.stack(image).to(self.device)
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else:
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raise ValueError(f"Unsupported type of image: {type(image)}")
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image = self.image_cond_model_transform(image).to(self.device)
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features = self.models['image_cond_model'](image, is_training=True)['x_prenorm']
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patchtokens = F.layer_norm(features, features.shape[-1:])
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return patchtokens
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def get_cond(self, image: Union[torch.Tensor, list[Image.Image]]) -> dict:
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"""
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Get the conditioning information for the model.
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Args:
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image (Union[torch.Tensor, list[Image.Image]]): The image prompts.
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Returns:
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dict: The conditioning information
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"""
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cond = self.encode_image(image)
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neg_cond = torch.zeros_like(cond)
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return {
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'cond': cond,
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'neg_cond': neg_cond,
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}
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def sample_sparse_structure(
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self,
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cond: dict,
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num_samples: int = 1,
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sampler_params: dict = {},
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) -> torch.Tensor:
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"""
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Sample sparse structures with the given conditioning.
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Args:
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cond (dict): The conditioning information.
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num_samples (int): The number of samples to generate.
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sampler_params (dict): Additional parameters for the sampler.
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"""
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flow_model = self.models['sparse_structure_flow_model']
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reso = flow_model.resolution
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noise = torch.randn(num_samples, flow_model.in_channels, reso, reso, reso).to(self.device)
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sampler_params = {**self.sparse_structure_sampler_params, **sampler_params}
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z_s = self.sparse_structure_sampler.sample(
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flow_model,
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noise,
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**cond,
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**sampler_params,
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verbose=True
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).samples
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decoder = self.models['sparse_structure_decoder']
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coords = torch.argwhere(decoder(z_s)>0)[:, [0, 2, 3, 4]].int()
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return coords
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def decode_slat(
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self,
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slat: sp.SparseTensor,
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formats: List[str] = ['mesh', 'gaussian', 'radiance_field'],
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) -> dict:
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"""
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Decode the structured latent.
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Args:
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slat (sp.SparseTensor): The structured latent.
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formats (List[str]): The formats to decode the structured latent to.
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Returns:
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dict: The decoded structured latent.
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"""
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ret = {}
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if 'mesh' in formats:
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ret['mesh'] = self.models['slat_decoder_mesh'](slat)
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if 'gaussian' in formats:
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ret['gaussian'] = self.models['slat_decoder_gs'](slat)
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if 'radiance_field' in formats:
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ret['radiance_field'] = self.models['slat_decoder_rf'](slat)
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return ret
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def sample_slat(
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self,
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cond: dict,
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coords: torch.Tensor,
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sampler_params: dict = {},
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) -> sp.SparseTensor:
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"""
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Sample structured latent with the given conditioning.
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Args:
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cond (dict): The conditioning information.
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coords (torch.Tensor): The coordinates of the sparse structure.
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sampler_params (dict): Additional parameters for the sampler.
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"""
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flow_model = self.models['slat_flow_model']
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noise = sp.SparseTensor(
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feats=torch.randn(coords.shape[0], flow_model.in_channels).to(self.device),
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coords=coords,
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)
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sampler_params = {**self.slat_sampler_params, **sampler_params}
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slat = self.slat_sampler.sample(
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flow_model,
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noise,
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**cond,
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**sampler_params,
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verbose=True
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).samples
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std = torch.tensor(self.slat_normalization['std'])[None].to(slat.device)
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mean = torch.tensor(self.slat_normalization['mean'])[None].to(slat.device)
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slat = slat * std + mean
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return slat
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@torch.no_grad()
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def run(
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self,
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image: Image.Image,
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num_samples: int = 1,
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seed: int = 42,
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sparse_structure_sampler_params: dict = {},
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slat_sampler_params: dict = {},
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formats: List[str] = ['mesh', 'gaussian', 'radiance_field'],
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preprocess_image: bool = True,
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) -> dict:
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"""
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Run the pipeline.
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Args:
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image (Image.Image): The image prompt.
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num_samples (int): The number of samples to generate.
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sparse_structure_sampler_params (dict): Additional parameters for the sparse structure sampler.
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slat_sampler_params (dict): Additional parameters for the structured latent sampler.
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preprocess_image (bool): Whether to preprocess the image.
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"""
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if preprocess_image:
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image = self.preprocess_image(image)
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cond = self.get_cond([image])
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torch.manual_seed(seed)
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coords = self.sample_sparse_structure(cond, num_samples, sparse_structure_sampler_params)
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slat = self.sample_slat(cond, coords, slat_sampler_params)
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return self.decode_slat(slat, formats)
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@contextmanager
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def inject_sampler_multi_image(
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self,
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sampler_name: str,
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num_images: int,
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num_steps: int,
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mode: Literal['stochastic', 'multidiffusion'] = 'stochastic',
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):
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"""
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Inject a sampler with multiple images as condition.
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Args:
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sampler_name (str): The name of the sampler to inject.
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num_images (int): The number of images to condition on.
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num_steps (int): The number of steps to run the sampler for.
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"""
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sampler = getattr(self, sampler_name)
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setattr(sampler, f'_old_inference_model', sampler._inference_model)
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if mode == 'stochastic':
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if num_images > num_steps:
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print(f"\033[93mWarning: number of conditioning images is greater than number of steps for {sampler_name}. "
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"This may lead to performance degradation.\033[0m")
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cond_indices = (np.arange(num_steps) % num_images).tolist()
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def _new_inference_model(self, model, x_t, t, cond, **kwargs):
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cond_idx = cond_indices.pop(0)
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cond_i = cond[cond_idx:cond_idx+1]
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return self._old_inference_model(model, x_t, t, cond=cond_i, **kwargs)
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elif mode =='multidiffusion':
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from .samplers import FlowEulerSampler
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def _new_inference_model(self, model, x_t, t, cond, neg_cond, cfg_strength, cfg_interval, **kwargs):
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if cfg_interval[0] <= t <= cfg_interval[1]:
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preds = []
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for i in range(len(cond)):
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preds.append(FlowEulerSampler._inference_model(self, model, x_t, t, cond[i:i+1], **kwargs))
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pred = sum(preds) / len(preds)
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neg_pred = FlowEulerSampler._inference_model(self, model, x_t, t, neg_cond, **kwargs)
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return (1 + cfg_strength) * pred - cfg_strength * neg_pred
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else:
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preds = []
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for i in range(len(cond)):
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preds.append(FlowEulerSampler._inference_model(self, model, x_t, t, cond[i:i+1], **kwargs))
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pred = sum(preds) / len(preds)
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return pred
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else:
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raise ValueError(f"Unsupported mode: {mode}")
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sampler._inference_model = _new_inference_model.__get__(sampler, type(sampler))
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yield
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sampler._inference_model = sampler._old_inference_model
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delattr(sampler, f'_old_inference_model')
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@torch.no_grad()
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def run_multi_image(
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self,
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images: List[Image.Image],
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num_samples: int = 1,
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seed: int = 42,
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sparse_structure_sampler_params: dict = {},
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slat_sampler_params: dict = {},
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formats: List[str] = ['mesh', 'gaussian', 'radiance_field'],
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preprocess_image: bool = True,
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mode: Literal['stochastic', 'multidiffusion'] = 'stochastic',
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) -> dict:
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"""
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Run the pipeline with multiple images as condition
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Args:
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images (List[Image.Image]): The multi-view images of the assets
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num_samples (int): The number of samples to generate.
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sparse_structure_sampler_params (dict): Additional parameters for the sparse structure sampler.
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slat_sampler_params (dict): Additional parameters for the structured latent sampler.
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preprocess_image (bool): Whether to preprocess the image.
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"""
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if preprocess_image:
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images = [self.preprocess_image(image) for image in images]
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cond = self.get_cond(images)
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cond['neg_cond'] = cond['neg_cond'][:1]
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torch.manual_seed(seed)
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ss_steps = {**self.sparse_structure_sampler_params, **sparse_structure_sampler_params}.get('steps')
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with self.inject_sampler_multi_image('sparse_structure_sampler', len(images), ss_steps, mode=mode):
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coords = self.sample_sparse_structure(cond, num_samples, sparse_structure_sampler_params)
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slat_steps = {**self.slat_sampler_params, **slat_sampler_params}.get('steps')
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with self.inject_sampler_multi_image('slat_sampler', len(images), slat_steps, mode=mode):
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slat = self.sample_slat(cond, coords, slat_sampler_params)
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return self.decode_slat(slat, formats)
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